活动的纹理:利用加速度计数据分析的局部二进制模式

Tunç Aşuroğlu, K. Açıcı, Ç. Erdaş, H. Oğul
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引用次数: 5

摘要

通过可穿戴传感器(如加速度计)识别活动是普适和无处不在的计算领域最近面临的一个挑战。这个问题通常被认为是一个分类任务,从输入信号中提取一组描述性特征来馈送机器学习分类器。到目前为止,在这些研究中被忽视的一个主要问题是,将局部嵌入的特征结合起来,这些特征确实可以在描述被实验个体的主要活动时提供信息。为了缩小这一差距,我们在这里提供了在加速度计数据的一维空间中适应局部二值模式(LBP)方法,该方法经常用于识别图像中的纹理。为此,我们利用在输入加速度计信号的每个轴中发现的LPB直方图作为特征集来馈送k-最近邻分类器。在一个基准数据集上的实验表明,本文提出的方法优于以往的一些方法。
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Texture of Activities: Exploiting Local Binary Patterns for Accelerometer Data Analysis
Recognition of activities through wearable sensors such as accelerometers is a recent challenge in pervasive and ubiquitous computing. The problem is often considered as a classification task where a set of descriptive features are extracted from input signal to feed a machine learning classifier. A major issue ignored so far in these studies is the incorporation of locally embedded features that could indeed be informative in describing the main activity performed by the individual being experimented. To close this gap, we offer here adapting Local Binary Pattern (LBP) approach, which is frequently used in identifying textures in images, in one dimensional space of accelerometer data. To this end, we exploit the histogram of LPB found in each axes of input accelerometer signal as a feature set to feed a k-Nearest Neighbor classifier. The experiments on a benchmark dataset have shown that the proposed method can outperform some previous methods.
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